AtomVM Internals
What is an Abstract Machine?
AtomVM is an “abstract” or “virtual” machine, in the sense that it simulates, in software, what a physical machine would do when executing machine instructions. In a normal computing machine (e.g., a desktop computer), machine code instructions are generated by a tool called a compiler, allowing an application developer to write software in a high-level language (such as C). (In rare cases, application developers will write instructions in assembly code, which is closer to the actual machine instructions, but which still requires a translation step, called “assembly”, to translate the assembly code into actual machine code.) Machine code instructions are executed in hardware using the machine’s Central Processing Unit (CPU), which is specifically designed to efficiently execute machine instructions targeted for the specific machine architecture (e.g., Intel x86, ARM, Apple M-series, etc.) As a result, machine code instructions are typically tightly packed, encoded instructions that require minimum effort (on the part of the machine) to unpack an interpret. These a low level instructions unsuited for human interpretation, or at least for most humans.
AtomVM and virtual machines generally (including, for example, the Java Virtual Machine) perform a similar task, except that i) the instructions are not machine code instructions, but rather what are typically called “bytecode” or sometimes “opcode” instructions; and ii) the generated instructions are themselves executed by a runtime execution engine written in software, a so-called “virtual” or sometimes “abstract” machine. These bytecode instructions are generated by a compiler tailored specifically for the virtual machine. For example, the javac
compiler is used to translate Java source code into Java VM bytecode, and the erlc
compiler is used to translate Erlang source code into BEAM opcodes.
AtomVM is an abstract machine designed to implement the BEAM instruction set, the 170+ (and growing) set of virtual machine instructions implemented in the Erlang/OTP BEAM.
Note
There is no abstract specification of the BEAM abstract machine and instruction set. Instead, the BEAM implementation by the Erlang/OTP team is the definitive specification of its behavior.
At a high level, the AtomVM abstract machine is responsible for:
Loading and execution of the BEAM opcodes encoded in one or more BEAM files;
Managing calls to internal and external functions, handling return values, exceptions, and crashes;
Creation and destruction of Erlang “processes” within the AtomVM memory space, and communication between processes via message passing;
Memory management (allocation and reclamation) of memory associated with Erlang “processes”
Pre-emptive scheduling and interruption of Erlang “processes”
Execution of user-defined native code (Nifs and Ports)
Interfacing with the host operating system (or facsimile)
This document provides a description of the AtomVM abstract machine, including its architecture and the major components and data structures that form the system. It is intended for developers who want to get involved in bug fixing or implementing features for the VM, as well as for anyone interested in virtual machine internals targeted for BEAM-based languages, such as Erlang or Elixir.
AtomVM Data Structures
This section describes AtomVM internal data structures that are used to manage the load and runtime state of the virtual machine. Since AtomVM is written in C, this discussion will largely be in the context of native C data structures (i.e., structs
). The descriptions will start at a fairly high level but drill down to some detail about the data structures, themselves. This narrative is important, because memory is limited on the target architectures for AtomVM (i.e., micro-controllers), and it is important to always be aware of how memory is organized and used in a way that is as space-efficient as possible.
The GlobalContext
We start with the top level data structure, the GlobalContext
struct. This object is a singleton object (currently, and for the foreseeable future), and represents the root of all data structures in the virtual machine. It is in essence in 1..1 correspondence with instances of the virtual machine.
-
struct GlobalContext
Collaboration diagram for GlobalContext:
Public Members
-
struct ListHead ready_processes
-
struct ListHead running_processes
-
struct ListHead waiting_processes
-
SpinLock processes_spinlock
-
struct MessageQueueItem *message_queue
-
struct RefcBinaryQueueItem *refc_queue
-
struct SyncList refc_binaries
-
struct SyncList processes_table
-
struct SyncList registered_processes
-
struct SyncList listeners
-
struct SyncList resource_types
-
struct SyncList select_events
-
int32_t last_process_id
-
struct AtomTable *atom_table
-
struct AtomsHashTable *modules_table
-
RWLock *modules_lock
-
int loaded_modules_count
-
struct SyncList avmpack_data
-
struct TimerList timer_list
-
SpinLock timer_spinlock
-
unsigned long long ref_ticks
-
SpinLock ref_ticks_spinlock
-
int online_schedulers
-
int running_schedulers
-
bool waiting_scheduler
-
Mutex *schedulers_mutex
-
CondVar *schedulers_cv
-
bool scheduler_stop_all
-
SpinLock env_spinlock
-
void *platform_data
-
struct ListHead ready_processes
Note
Given the design of the system, it is theoretically possible to run multiple instances of the AtomVM in one process space. However, no current deployments make use of this capability.
In order to simplify the exposition of this structure, we break the fields of the structure into manageable subsets:
Process management – fields associated with the management of Erlang (lightweight) “processes”
Atoms management – fields associated with the storage of atoms
Module Management – fields associated with the loading of BEAM modules
Reference Counted Binaries – fields associated with the storage of binary data shared between processes
Other data structures
These subsets are described in more detail below.
Warning
Not all fields of the GlobalContext
structure are described in this document.
Process Management
As a BEAM implementation, AtomVM must be capable of spawning and managing the lifecycle of Erlang lightweight processes. Each of these processes is encapsulated in the Context
structure, described in more detail in subsequent sections.
The GlobalContext
structure maintains a list of running processes and contains the following fields for managing the running Erlang processes in the VM:
processes_table
the list of all processes running in the systemwaiting_processes
the subset of processes that are waiting to run (e.g., waiting for a message or timeout condition).running_processes
the subset of processes that are currently running.ready_processes
the subset of processes that are ready to run.
Processes are in either waiting_processes
, running_processes
or ready_processes
. A running process can technically be moved to the ready list while running to signify that if it yields, it will be eligible for being run again, typically if it receives a message. Also, native handlers (ports) are never moved to the running_processes
list but are in the waiting_processes
list when they run (and can be moved to ready_processes
list if they are made ready while running).
Each of these fields are doubly-linked list (ring) structures, i.e, structs containing a prev
and next
pointer field. The Context
data structure begins with two such structures, the first of which links the Context
struct in the processes_table
field, and the second of which is used for either the waiting_processes
, the ready_processes
or the running_processes
field.
Tip
The C programming language treats structures in memory as contiguous sequences of fields of given types. Structures have no hidden preamble data, such as you might find in C++ or who knows what in even higher level languages. The size of a struct, therefore, is determined simply by the size of the component fields.
The relationship between the GlobalContext
fields that manage BEAM processes and the Context
data structures that represent the processes, themselves, is illustrated in the following diagram:
See also
The Context data structure is described in more detail below.
Contexts
Danger
This section is under construction
-
struct Context
Collaboration diagram for Context:
Public Members
-
GlobalContext *global
-
Heap heap
-
term *e
-
term x[16 + 1]
-
struct ListHead extended_x_regs
-
struct ListHead processes_list_head
-
struct ListHead processes_table_head
-
int32_t process_id
-
struct TimerListItem timer_list_head
-
struct ListHead monitors_head
-
avm_float_t *fr
-
size_t min_heap_size
-
size_t max_heap_size
-
enum HeapGrowthStrategy heap_growth_strategy
-
unsigned long cp
-
const void *saved_ip
-
void *restore_trap_handler
-
struct ListHead dictionary
-
native_handler_f native_handler
-
uint64_t reductions
-
unsigned int leader
-
unsigned int has_min_heap_size
-
unsigned int has_max_heap_size
-
bool trap_exit
-
unsigned int trace_calls
-
unsigned int trace_call_args
-
unsigned int trace_returns
-
unsigned int trace_send
-
unsigned int trace_receive
-
enum ContextFlags flags
-
void *platform_data
-
term group_leader
-
term bs
-
size_t bs_offset
-
term exit_reason
-
GlobalContext *global
The Scheduler
In SMP builds, AtomVM runs one scheduler thread per core. Scheduler threads are actually started on demand. The number of scheduler threads can be queried with erlang:system_info/1
and be modified with erlang:system_flag/2
. All scheduler threads are considered equal and there is no notion of main thread except when shutting down (main thread is shut down last).
Each scheduler thread picks a ready process and execute it until it yields. Erlang processes yield when they are waiting (for a message) and after a number of reductions elapsed. Native processes yield when they are done consuming messages (when the handler returns).
Once a scheduler thread is done executing a process, if no other thread is waiting into sys_poll_events
, it calls sys_poll_events
with a timeout that correspond to the time to wait for next execution. If there are ready processes, the timeout is 0. If there is no ready process, this scheduler thread will wait into sys_poll_event
and depending on the platform implementation, the CPU usage can drop.
- void sys_poll_events(GlobalContext *glb, int timeout_ms)
Poll events (from drivers and select events), with a timeout (in ms), or until
sys_signal
is called.Depending on platforms, check all open file descriptors/queues and call drivers that should send messages to contexts (which will unblock them). With SMP builds, this function can be called from any scheduler.
If selectable events are supported on the platform, this function should also:
call
select_event_destroy
on select events that have close set to 1include the set of ErlNifEvent that are marked for read or write in the select set, and if they are selected, call
select_event_notify
to send the notification.
select_event_count_and_destroy_closed
defined in resources.h can be used to process closed select events.
- Parameters:
glb – the global context.
timeout_ms – the number of ms to wait,
SYS_POLL_EVENTS_WAIT_FOREVER
to wait forever.
If there already is one thread in sys_poll_events
, other scheduler threads pick the next ready process and if there is none, wait. Other scheduler threads can also interrupt the wait in sys_poll_events
if a process is made ready to run. They do so using platform function sys_signal
.
- void sys_signal(GlobalContext *glb)
Interrupt the wait in
sys_poll_events
.This function should signal the thread that is waiting in
sys_poll_events
so it returns before the timeout. It is mostly used for SMP builds, but also to abort sleep from driver callbacks on FreeRTOS.Please note that this function may be called while no thread is waiting in sys_poll_events and this should have no effect. This function is called in scheduler loop (internal function
scheduler_run0
) and when scheduling processes.
- Parameters:
glb – the global context.
Tasks and synchronization mechanisms
AtomVM SMP builds run on operating or runtime systems implementing tasks (FreeRTOS SMP on ESP32, Unix and WebAssembly) as well as on systems with no task implementation (Raspberry Pi Pico).
On runtime systems with tasks, each scheduler thread is implemented as a task. On Pico, a scheduler thread runs on Core 0 and another one runs on Core 1, and they are effectively pinned to each core.
For synchronization purposes, AtomVM uses mutexes, condition variables, RW locks, spinlocks and Atomics.
Availability of RW Locks and atomics are verified at compile time using detection of symbols for RW Locks and ATOMIC_*_LOCK_FREE
C11 macros for atomics.
Mutexes and condition variables are provided by the SDK or the runtime system. If RW Locks are not available, AtomVM uses mutexes. Atomics are not available on Pico and are replaced by critical sections. Spinlocks are implemented by AtomVM on top of Atomics, or using mutexes on Pico.
Importantly, locking synchronization mechanisms (mutexes, RW locks, spinlocks) are not interrupt-safe. Interrupt service routines must not try to lock as they could fail forever if interrupted code owns the lock. Atomics, including emulation on Pico, are interrupt-safe.
Drivers can send messages from event callbacks typically called from FreeRTOS tasks using globalcontext_send_message_from_task
or port_send_message_from_task
functions instead of globalcontext_send_message
or port_send_message
. These functions try to acquire required locks and if they fail, enqueue sent message in a queue, so it is later processed when the scheduler performs context switching. The functions are undefined if option AVM_DISABLE_TASK_DRIVER
is passed. Some platforms do not include support for task drivers. Define AVM_TASK_DRIVER_ENABLED
can be checked to determine if these functions are available.
- void globalcontext_send_message(GlobalContext *glb, int32_t process_id, term t)
Send a message to a process identified by its id.
Safely send a message to the process, doing nothing is the process cannot be found.
- Parameters:
glb – the global context (that owns the process table).
process_id – the local process id.
t – the message to send.
- void globalcontext_send_message_from_task(GlobalContext *glb, int32_t process_id, enum MessageType type, term t)
Send a message to a process identified by its id. This variant is to be used from task drivers. It tries to acquire the necessary locks and if it fails, it enqueues the message which will be delivered on the next scheduler context switch.
Safely send a message to the process, doing nothing if the process cannot be found.
- Parameters:
glb – the global context (that owns the process table).
process_id – the target process id.
type – the type of message to send, can be NormalMessage or a signal
t – the message to send.
Mailboxes and signals
Erlang processes receive messages in a mailbox. The mailbox is the interface with other processes.
When a sender process sends a message to a recipient process, the message is first enqueued into an outer mailbox. The recipient process eventually moves all messages from the outer mailbox to the inner mailbox. The reason for the inner and outer mailbox is to use lock-free data structures using atomic CAS operations.
Sometimes, Erlang processes need to query information from other processes but without sending a regular message, for example when using process_info/1,2
nif. This is handled by signals. Signals are special messages that are enqueued in the outer mailbox of a process. Signals are processed by the recipient process when regular messages from the outer mailbox are moved to the inner mailbox. Signal processing code is part of the main loop and transparent to recipient processes. Both native handlers and erlang processes can receive signals. Signals are also used to run specific operation on other processes that cannot be done from another thread. For example, signals are used to perform garbage collection on another process.
When an Erlang process calls a nif that requires such an information from another process such as process_info/1,2
, the nif returns a special value and set the Trap
flag on the calling process. The calling process is effectively blocked until the other process is scheduled and the information is sent back using another signal message. This mechanism can also be used by nifs that want to block until a condition is true.
Stacktraces
Stacktraces are computed from information gathered at load time from BEAM modules loaded into the application, together with information in the runtime stack that is maintained during the execution of a program. In addition, if a BEAM file contains a Line
chunk, additional information is added to stack traces, including the file name (as defined at compile time), as well as the line number of a function call.
Tip
Adding line information to a BEAM file adds non-trivial memory overhead to applications and should only be used when necessary (e.g., during the development process). For applications to make the best use of memory in tightly constrained environments, packagers should consider removing line information all together from BEAM files and rely instead on logging or other mechanisms for diagnosing problems in the field.
Newcomers to Erlang may find stacktraces slightly confusing, because some optimizations taken by the Erlang compiler and runtime can result in stack frames “missing” from stack traces. For example, tail-recursive function calls, as well as function calls that occur as the last expression in a function clause, don’t involve the creation of frames in the runtime stack, and consequently will not appear in a stacktrace.
Line Numbers
Including file and line number information in stacktraces adds considerable overhead to both the BEAM file data, as well as the memory consumed at module load time. The data structures used to track line numbers and file names are described below and are only created if the associated BEAM file contains a Line
chunk.
The line-refs table
The line-refs table is an array of 16-bit integers, mapping line references (as they occur in BEAM instructions) to the actual line numbers in a file. (Internally, BEAM instructions do not reference line numbers directly, but instead are indirected through a line index). This table is stored on the Module
structure.
- struct Module
Collaboration diagram for Module:
Public Members
- void *import_table
- CodeChunk *code
- void *export_table
- void *local_table
- void *atom_table
- void *fun_table
- void *str_table
- size_t str_table_len
- uint16_t *line_refs
- struct ModuleFilename *filenames
- struct ListHead line_ref_offsets
- const struct ExportedFunction **imported_funcs
- const uint8_t **labels
- void *literals_data
- struct LiteralEntry *literals_table
- int *local_atoms_to_global_table
- void *module_platform_data
- int module_index
- int end_instruction_ii
- unsigned int free_literals_data
- Mutex *mutex
This table is populated when the BEAM file is loaded. The table is created from information in the Line
chunk in the BEAM file, if it exists. Note that if there is no Line
chunk in a BEAM file, this table is not created.
The memory cost of this table is num_line_refs * 2
bytes, for each loaded module, or 0, if there is no Line
chunk in the associated BEAM file.
The filenames table
The filenames table is a table of (usually only 1?) file name. This table maps filename indices to ModuleFilename
structures, which is essentially a pointer and a length (of type size_t
). This table generally only contains 1 entry, the file name of the Erlang source code module from which the BEAM file was generated. This table is stored on the Module
structure.
Note that a ModuleFilename
structure points to data directly in the Line
chunk of the BEAM file. Therefore, for ports of AtomVM that memory-map BEAM file data (e.g., ESP32), the actual file name data does not consume any memory.
The memory cost of this table is num_filenames * sizeof(struct ModuleFilename)
, where struct ModuleFilename
is a pointer and length, for each loaded module, or 0, if there is no Line
chunk in the associated BEAM file.
The line-ref-offsets list
The line-ref-offsets list is a sequence of LineRefOffset
structures, where each structure contains a ListHead (for list book-keeping), a 16-bit line-ref, and an unsigned integer value designating the code offset at which the line reference occurs in the code chunk of the BEAM file. This list is stored on the Module
structure.
This list is populated at code load time. When a line reference is encountered during code loading, a LineRefOffset
structure is allocated and added to the line-ref-offsets list. This list is used at a later time to find the line number at which a stack frame is called, in a manner described below.
The memory cost of this list is num_line_refs * sizeof(struct LineRefOffset)
, for each loaded module, or 0, if there is no Line
chunk in the associated BEAM file.
AtomVM WebAssembly port
WebAssembly or Wasm port of AtomVM relies on Emscripten SDK and library. Even when SMP is disabled (with -DAVM_DISABLE_SMP=On
), it uses pthread library to sleep when Erlang processes are not running (to not waste CPU cycles).
NodeJS environment build
The NodeJS environment build of this port is relatively straightforward, featuring NODERAWFS which means it can access files directly like node does.
Web environment build
The Web environment build of this port is slightly more complex.
Regarding files, main
function can load modules (beam or AVM packages) using FetchAPI, which means they can be served by the same HTTP server. This is a fallback and users can preload files using Emscripten file_packager
tool.
The port also uses Emscripten’s proxy-to-pthread feature which means AtomVM’s main
function is run in a web worker. The rationale is the browser thread (or main thread) with WebAssembly cannot run a loop such as AtomVM’s schedulers. Web workers typically cannot manipulate the DOM and do other things that only the browser’s main thread can do. For this purpose, Erlang processes can call emscripten:run_script/2
function which dispatches the Javascript to execute to the main thread, waiting for completion (with [main_thread]
) or not waiting for completion (with [main_thread, async]
). Waiting for completion of a script on the main thread does not block the Erlang scheduler, other Erlang processes can be scheduled. Execution of Javascript on the worker thread, however, does block the scheduler.
Javascript code can also send messages to Erlang processes using call
and cast
functions from main.c
. These functions are actually wrapped in atomvm.pre.js
. Usage is demonstrated by call_cast.html
example.
Cast is straightforward: the message is enqueued and picked up by the scheduler. It is freed when it is processed.
Call allows Javascript code to wait for the result and is based on Javascript promises (related to async
/await
syntax).
A promise is created (in the browser’s main thread) in a map to prevent Javascript garbage collection (this is done by Emscripten’s promise glue code).
An Erlang resource is created to encapsulate the promise so it is properly destroyed when garbage collected
A message is enqueued with the resource as well as the registered name of the target process and the content of the message
C code returns the handle of the promise (actually the index in the map) to Javascript Module.call wrapper.
The
Module.call
wrapper converts the handle into a Promise object and returns it, so Javascript code can await on the promise.A scheduler dequeues the message with the resource, looks up the target process and sends it the resource as a term
The target process eventually calls
emscripten:promise_resolve/1,2
oremscripten:promise_reject/1,2
to resolve or reject the promise.The
emscripten:promise_resolve/1,2
andemscripten:promise_reject/1,2
nifs dispatch a message in the browser’s main thread.The dispatched function retrieves the promise from its index, resolves or rejects it, with the value passed to
emscripten:promise_resolve/2
oremscripten:promise_reject/2
and destroys it.
Values currently can only be integers or strings.
If the scheduler cannot find the target process, the promise is rejected with “noproc” as a value. As the promise is encapsulated into an Erlang resource, if the resource object’s reference count reaches 0, the promise is rejected with “noproc” as the value.